Title of article
Long-tail buffer-content distributions in broadband networks
Author/Authors
Choudhury، نويسنده , , Gagan L. and Whitt، نويسنده , , Ward، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1997
Pages
14
From page
177
To page
190
Abstract
We identify conditions under which relatively large buffers will be required in broadband communication networks. For this purpose, we analyze an infinite-capacity stochastic fluid model with a general stationary environment process (without the usual independence or Markov assumptions). With that level of generality, we are unable to establish asymptotic results, but by a very simple argument we are able to obtain a revealing lower bound on the steady-state buffer-content tail probability. The bounding argument shows that the steady-state buffer content will have a long-tail distribution when the sojourn time in a set of states with positive net input rate itself has a long-tail distribution. If a set of independent sources, each with a general stationary environment process, produces a positive net flow when all are in high-activity states, and if each of these sources has a high-activity sojourn-time distribution with a long tail, then the steady-state buffer-content distribution will have a long tail, but possibly one that decays faster than the tail for any single component source. The full buffer-content distribution can be derived in the special case of a two-state fluid model with general high- and low-activity-time distributions, assuming that successive high- and low-activity times come from independent sequences of i.i.d. random variables. In that case the buffer-content distribution will have a long tail when the high-activity-time distribution has a long tail. We illustrate by giving numerical examples of the two-state model based on numerical transform inversion.
Keywords
Tail probabilities , Stochastic fluid models , Long-tail distributions , Power tails , Asynchronous transfer mode , ATM , Broadband networks , B-ISDN , Buffer content , Regularly variation , subexponential distributions
Journal title
Performance Evaluation
Serial Year
1997
Journal title
Performance Evaluation
Record number
1568686
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